Shared Gamma Frailty Models Based on Additive Hazards

Journal of the Indian Society for Probability and Statistics - Tập 17 Số 2 - Trang 161-184 - 2016
David D. Hanagal1, Arvind Pandey2
1Department of Statistics, University of Pune, Pune 411007, India
2Department of Statistics, Pachhunga University College, Aizawl, 796001, India

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